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Assessing uncertainties in climate change impact analyses on the river flow regimes in the UK. Part 1: baseline climate

机译:评估气候变化对英国河流水流状况的影响分析中的不确定性。第1部分:基准气候

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Assessing future climate and its potential implications on river flows is a key challenge facing water resource planners. Sound, scientifically-based advice to decision makers also needs to incorporate information on the uncertainty in the results. Moreover, existing bias in the reproduction of the 'current' (or baseline) river flow regime is likely to transfer to the simulations of flow in future time horizons, and it is thus critical to undertake baseline flow assessment while undertaking future impacts studies. This paper investigates the three main sources of uncertainty surrounding climate change impact studies on river flows: uncertainty in GCMs, in downscaling techniques and in hydrological modelling. The study looked at four British catchments' flow series simulated by a lumped conceptual rainfall-runoff model with observed and GCM-derived rainfall series representative of the baseline time horizon (1961-1990). A block-resample technique was used to assess climate variability, either from observed records (natural variability) or reproduced by GCMs. Variations in mean monthly flows due to hydrological model uncertainty from different model structures or model parameters were also evaluated. Three GCMs (HadCM3, CCGCM2, and CSIRO-mk2) and two downscaling techniques (SDSM and HadRM3) were considered. Results showed that for all four catchments, GCM uncertainty is generally larger than downscaling uncertainty, and both are consistently greater than uncertainty from hydrological modelling or natural variability. No GCM or downscaling technique was found to be significantly better or to have a systematic bias smaller than the others. This highlights the need to consider more than one GCM and downscaling technique in impact studies, and to assess the bias they introduce when modelling river flows.
机译:评估未来的气候及其对河流流量的潜在影响是水资源规划人员面临的主要挑战。向决策者提供基于科学依据的合理建议,还需要将有关结果不确定性的信息纳入其中。此外,“当前”(或基准)河流流量状态再生产中的现有偏差可能会转移到未来时间范围内的流量模拟中,因此在进行未来影响研究的同时进行基准流量评估至关重要。本文研究了围绕气候变化对河流流量影响研究的不确定性的三个主要来源:GCM,降尺度技术和水文模型的不确定性。该研究考察了四个英国流域的流量序列,这些流量序列是通过集总概念性降雨径流模型模拟的,其中观测到的和GCM得出的降雨序列代表了基线时间范围(1961-1990年)。块重采样技术被用于评估气候变化性,可从观测记录(自然变化性)或由GCM复制。还评估了来自不同模型结构或模型参数的水文模型不确定性导致的平均月流量的变化。考虑了三种GCM(HadCM3,CCGCM2和CSIRO-mk2)和两种缩减规模的技术(SDSM和HadRM3)。结果表明,对于所有四个流域,GCM的不确定性通常大于缩减规模的不确定性,并且两者都始终大于水文模型或自然变异性的不确定性。没有发现GCM或降级技术比其他方法好得多或系统偏差较小。这凸显了在影响研究中需要考虑不止一种GCM和降尺度技术,并评估它们在模拟河流流量时引入的偏差的必要性。

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